Publication | Closed Access
An Energy Efficient ECG Ventricular Ectopic Beat Classifier Using Binarized CNN for Edge AI Devices
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Citations
41
References
2022
Year
Convolutional Neural NetworkEngineeringMachine LearningNeural Networks (Machine Learning)Hardware AlgorithmWearable TechnologySocial SciencesMedical InstrumentationEdge DevicesElectrophysiological EvaluationBiosignal ProcessingComputing SystemsEmbedded Machine LearningNetwork PhysiologyComputer EngineeringComputer ScienceNeural Networks (Computational Neuroscience)Deep LearningWearable Artificial Intelligence-of-thingsDynamic Power DissipationEdge Ai DevicesBiomedical SensorsHardware AccelerationCellular Neural NetworkBiomedical Signal Processing
Wearable Artificial Intelligence-of-Things (AIoT) requires edge devices to be resource and energy-efficient. In this paper, we design and implement an efficient binary convolutional neural network (bCNN) algorithm utilizing function-merging and block-reuse techniques to classify between Ventricular and non-Ventricular Ectopic Beat images. We deploy our model into a low-resource low-power field programmable gate array (FPGA) fabric. Our model achieves a classification accuracy of 97.3%, sensitivity of 91.3%, specificity of 98.1%, precision of 86.7%, and F1-score of 88.9%, along with dynamic power dissipation of only 10.5-μW.
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